Aparna Ananthasubramaniam, David Jurgens, Daniel M. Romero
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引用次数: 0
摘要
文化创新(如音乐、信仰、语言)往往在地区范围内采用。创新被采用的地理区域通常归因于以下两个因素之一:(i) 说话者采用了表明其人口身份的新行为(即身份效应),或 (ii) 这些行为通过同亲网络传播(即网络效应)。在本研究中,我们发现网络和身份在决定新语言在何处被采用方面起着互补作用;因此,建立词汇创新传播模型需要同时考虑网络和身份。我们建立了一个基于代理的文化采用模型,并在模拟中根据我们从 Twitter 的 10% 样本中识别出的创新词数据集(例如,fleeky、birbs、ubering)验证了地理属性。利用我们的模型,我们能够通过将网络和身份相结合的模型与模拟的纯网络和纯身份反事实进行比较,直接检验网络和身份的作用。我们发现,这两种效应影响着不同的传播机制。具体来说,网络主要通过弱联系扩散推动城市县域之间的传播,而身份则通过强联系扩散在农村县域之间的传播中发挥着不成比例的作用。城市和农村地区之间的扩散是创新在全国范围内传播的一个关键组成部分,它既需要网络,也需要身份。我们的工作表明,模型必须整合这两个因素,才能理解和再现创新的采用。
Networks and identity drive the spatial diffusion of linguistic innovation in urban and rural areas
Cultural innovation (e.g., music, beliefs, language) tends to be adopted regionally. The geographic area where innovation is adopted is often attributed to one of two factors: (i) speakers adopting new behaviors that signal their demographic identities (i.e., an identity effect), or (ii) these behaviors spreading through homophilous networks (i.e., a network effect). In this study, we show that network and identity play complementary roles in determining where new language is adopted; thus, modeling the diffusion of lexical innovation requires incorporating both network and identity. We develop an agent-based model of cultural adoption, and validate geographic properties in our simulations against a dataset of innovative words that we identify from a 10% sample of Twitter (e.g., fleeky, birbs, ubering). Using our model, we are able to directly test the roles of network and identity by comparing a model that combines network and identity against simulated network-only and identity-only counterfactuals. We show that both effects influence different mechanisms of diffusion. Specifically, network principally drives spread among urban counties via weak-tie diffusion, while identity plays a disproportionate role in transmission among rural counties via strong-tie diffusion. Diffusion between urban and rural areas, a key component in innovation spreading nationally, requires both network and identity. Our work suggests that models must integrate both factors in order to understand and reproduce the adoption of innovation.